Evaluating precipitation, streamflow, and inundation forecasting skills during extreme weather events: A case study for an urban watershed

Xudong Li, Cheryl Rankin, Sudershan Gangrade, Gang Zhao, Kris Lander, Nathalie Voisin, Manqing Shao, Mario Morales-Hernández, Shih Chieh Kao, Huilin Gao

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Integrated forecasting systems for precipitation, streamflow, and floodplain inundation are of critical importance in mitigating the impacts of destructive floods caused by extreme weather events. However, the skills of streamflow and floodplain inundation forecasts derived from various Quantitative Precipitation Forecasts (QPF) require a greater level of understanding. In this study, a set of QPF developed by the National Weather Service (NWS) were used to drive a flood modeling system obtained utilizing offline coupling of a physics-based distributed hydrological model, the Distributed Hydrology Soil and Vegetation Model (DHSVM), and a hydrodynamic model, the Two-dimensional Runoff Inundation Toolkit for Operational Needs (TRITON). This flood modeling system was used to produce forecasts of streamflow and floodplain inundation maps during three major flood events in the Brays Bayou Watershed (Houston, Texas, USA) for a range of QPF durations (6–72 h). Then, to investigate the effects of increasing QPF durations on the forecasts, the forecasting skills of precipitation, streamflow, and floodplain inundation were quantified. The results show that: 1) QPF skills for more intense and sustained events such as hurricanes and tropical storms are higher than for shorter, less intense events; 2) while QPF and streamflow forecasting skills decrease as QPF durations increase, inundation forecasts under longer QPF durations (24 or 72 h) show higher skills; 3) extending the maximum QPF duration in operational hydrologic modeling from 24 h (under normal circumstances) to 72 h (for extreme events) may increase the skills of long lead time forecasts for large-scale events like Hurricane Harvey.

Original languageEnglish
Article number127126
JournalJournal of Hydrology
Volume603
DOIs
StatePublished - Dec 2021

Funding

This study was supported by the U.S. National Science Foundation (Grants CBET-1454297 and CBET-1805584). Cheryl Rankin was also partially supported by a Minority Fellowship from Texas A&M University. The research used the resources of the Oak Ridge Leadership Computing Facility at Oak Ridge National Laboratory, which is a Department of Energy Office of Science User Facility. The work has also benefitted from the usage of the Texas A&M Supercomputing Facility ( http://hprc.tamu.edu ). This study was supported by the U.S. National Science Foundation (Grants CBET-1454297 and CBET-1805584). Cheryl Rankin was also partially supported by a Minority Fellowship from Texas A&M University. The research used the resources of the Oak Ridge Leadership Computing Facility at Oak Ridge National Laboratory, which is a Department of Energy Office of Science User Facility. The work has also benefitted from the usage of the Texas A&M Supercomputing Facility (http://hprc.tamu.edu).

Keywords

  • Extreme weather events
  • Flood forecasting skill
  • Inundation mapping
  • QPF duration
  • Quantitative precipitation forecast (QPF)

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